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      Functional connectivity classification of autism identifies highly predictive brain features but falls short of biomarker standards

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          Abstract

          Objectives

          Autism spectrum disorders (ASD) are diagnosed based on early-manifesting clinical symptoms, including markedly impaired social communication. We assessed the viability of resting-state functional MRI (rs-fMRI) connectivity measures as diagnostic biomarkers for ASD and investigated which connectivity features are predictive of a diagnosis.

          Methods

          Rs-fMRI scans from 59 high functioning males with ASD and 59 age- and IQ-matched typically developing (TD) males were used to build a series of machine learning classifiers. Classification features were obtained using 3 sets of brain regions. Another set of classifiers was built from participants' scores on behavioral metrics. An additional age and IQ-matched cohort of 178 individuals (89 ASD; 89 TD) from the Autism Brain Imaging Data Exchange (ABIDE) open-access dataset ( http://fcon_1000.projects.nitrc.org/indi/abide/ ) were included for replication.

          Results

          High classification accuracy was achieved through several rs-fMRI methods (peak accuracy 76.67%). However, classification via behavioral measures consistently surpassed rs-fMRI classifiers (peak accuracy 95.19%). The class probability estimates, P(ASD|fMRI data), from brain-based classifiers significantly correlated with scores on a measure of social functioning, the Social Responsiveness Scale (SRS), as did the most informative features from 2 of the 3 sets of brain-based features. The most informative connections predominantly originated from regions strongly associated with social functioning.

          Conclusions

          While individuals can be classified as having ASD with statistically significant accuracy from their rs-fMRI scans alone, this method falls short of biomarker standards. Classification methods provided further evidence that ASD functional connectivity is characterized by dysfunction of large-scale functional networks, particularly those involved in social information processing.

          Highlights

          • We distinguish rs-fMRI scans from ASD and TD individuals with high accuracy.

          • ASD versus TD classification using behavioral metrics was much more accurate.

          • Highly predictive brain features largely originated from the canonical social brain.

          • High performing brain features also correlated with individual symptom severity.

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          Most cited references29

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          Controlling the False Discovery Rate: A Practical and Powerful Approach to Multiple Testing

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            Autism and abnormal development of brain connectivity.

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              Salience network-based classification and prediction of symptom severity in children with autism.

              Autism spectrum disorder (ASD) affects 1 in 88 children and is characterized by a complex phenotype, including social, communicative, and sensorimotor deficits. Autism spectrum disorder has been linked with atypical connectivity across multiple brain systems, yet the nature of these differences in young children with the disorder is not well understood. To examine connectivity of large-scale brain networks and determine whether specific networks can distinguish children with ASD from typically developing (TD) children and predict symptom severity in children with ASD. Case-control study performed at Stanford University School of Medicine of 20 children 7 to 12 years old with ASD and 20 age-, sex-, and IQ-matched TD children. Between-group differences in intrinsic functional connectivity of large-scale brain networks, performance of a classifier built to discriminate children with ASD from TD children based on specific brain networks, and correlations between brain networks and core symptoms of ASD. We observed stronger functional connectivity within several large-scale brain networks in children with ASD compared with TD children. This hyperconnectivity in ASD encompassed salience, default mode, frontotemporal, motor, and visual networks. This hyperconnectivity result was replicated in an independent cohort obtained from publicly available databases. Using maps of each individual's salience network, children with ASD could be discriminated from TD children with a classification accuracy of 78%, with 75% sensitivity and 80% specificity. The salience network showed the highest classification accuracy among all networks examined, and the blood oxygen-level dependent signal in this network predicted restricted and repetitive behavior scores. The classifier discriminated ASD from TD in the independent sample with 83% accuracy, 67% sensitivity, and 100% specificity. Salience network hyperconnectivity may be a distinguishing feature in children with ASD. Quantification of brain network connectivity is a step toward developing biomarkers for objectively identifying children with ASD.
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                Author and article information

                Contributors
                Journal
                Neuroimage Clin
                Neuroimage Clin
                NeuroImage : Clinical
                Elsevier
                2213-1582
                24 December 2014
                24 December 2014
                2015
                : 7
                : 359-366
                Affiliations
                [a ]Section on Cognitive Neuropsychology, Laboratory of Brain and Cognition, National Institute of Mental Health, National Institutes of Health, Bethesda, MD, USA
                Author notes
                [* ]Corresponding author at: 10 Center Drive, MSC 1366, Bldg. 10, 4C214, Bethesda, MD 20892-1366, USA. Tel: +1 301 451 8509. mark.plitt@ 123456nih.gov
                Article
                S2213-1582(14)00198-3
                10.1016/j.nicl.2014.12.013
                4309950
                25685703
                25aad7a2-2e2b-419f-a186-646ce90e9000
                History
                : 29 October 2014
                : 12 December 2014
                : 22 December 2014
                Categories
                Article

                autism,biomarkers,machine learning classification,social brain

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